A Modified Jackknife Liu-Type Estimator for the Gamma Regression Models Data
Keywords:
Jackknife Liu-type, Gamma Regression, Multicollinearity, Monte Carlo Simulation
Abstract
Additional methods were suggested to enhance the biased estimation in the multiple linear regression model. The jackknife-biased estimate approach is essential for addressing high variance and multicollinearity issues. Reduce the effects of multicollinearity with the Liu estimator: This shrinkage method is attractive on several occasions. This document aims to derive a Jackknifed Liu-type Gamma estimator~(JGLTE) and a Modified Jackknifed Liu-type Gamma estimator~(MJGLTE) when multicollinearity exists. Based on Monte Carlo simulations, the proposed estimate outperforms the maximum likelihood estimator (MLE) in terms of mean square error (MSE). Finally, we illustrate the performance of this estimator using real-world data.
Published
2025-07-04
How to Cite
Algboory , A. M., Alkhateeb, A. N., & Algamal, Z. Y. (2025). A Modified Jackknife Liu-Type Estimator for the Gamma Regression Models Data. Statistics, Optimization & Information Computing. https://doi.org/10.19139/soic-2310-5070-2304
Issue
Section
Research Articles
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